Found 125 repositories(showing 30)
trsoliu
Open Source Skills Wiki: AI-Powered skills Wiki Generator for GitHub/Gitlab/Bitbucket Repositories.
henricook
A Claude Code Skill for Gitlab-CLI
vince-winkintel
Agent Skills for working with GitLab CLI
rios0rios0
Personal GitHub profile README with WakaTime stats, GitHub/GitLab statistics, and tech stack showcase. Features skills overview, language stats, and contribution graphs.
pnguenda
# Pandas Homework - Pandas, Pandas, Pandas ## Background The data dive continues! Now, it's time to take what you've learned about Python Pandas and apply it to new situations. For this assignment, you'll need to complete **one of two** (not both) Data Challenges. Once again, which challenge you take on is your choice. Just be sure to give it your all -- as the skills you hone will become powerful tools in your data analytics tool belt. ### Before You Begin 1. Create a new repository for this project called `pandas-challenge`. **Do not add this homework to an existing repository**. 2. Clone the new repository to your computer. 3. Inside your local git repository, create a directory for the Pandas Challenge you choose. Use folder names corresponding to the challenges: **HeroesOfPymoli** or **PyCitySchools**. 4. Add your Jupyter notebook to this folder. This will be the main script to run for analysis. 5. Push the above changes to GitHub or GitLab. ## Option 1: Heroes of Pymoli  Congratulations! After a lot of hard work in the data munging mines, you've landed a job as Lead Analyst for an independent gaming company. You've been assigned the task of analyzing the data for their most recent fantasy game Heroes of Pymoli. Like many others in its genre, the game is free-to-play, but players are encouraged to purchase optional items that enhance their playing experience. As a first task, the company would like you to generate a report that breaks down the game's purchasing data into meaningful insights. Your final report should include each of the following: ### Player Count * Total Number of Players ### Purchasing Analysis (Total) * Number of Unique Items * Average Purchase Price * Total Number of Purchases * Total Revenue ### Gender Demographics * Percentage and Count of Male Players * Percentage and Count of Female Players * Percentage and Count of Other / Non-Disclosed ### Purchasing Analysis (Gender) * The below each broken by gender * Purchase Count * Average Purchase Price * Total Purchase Value * Average Purchase Total per Person by Gender ### Age Demographics * The below each broken into bins of 4 years (i.e. <10, 10-14, 15-19, etc.) * Purchase Count * Average Purchase Price * Total Purchase Value * Average Purchase Total per Person by Age Group ### Top Spenders * Identify the the top 5 spenders in the game by total purchase value, then list (in a table): * SN * Purchase Count * Average Purchase Price * Total Purchase Value ### Most Popular Items * Identify the 5 most popular items by purchase count, then list (in a table): * Item ID * Item Name * Purchase Count * Item Price * Total Purchase Value ### Most Profitable Items * Identify the 5 most profitable items by total purchase value, then list (in a table): * Item ID * Item Name * Purchase Count * Item Price * Total Purchase Value As final considerations: * You must use the Pandas Library and the Jupyter Notebook. * You must submit a link to your Jupyter Notebook with the viewable Data Frames. * You must include a written description of three observable trends based on the data. * See [Example Solution](HeroesOfPymoli/HeroesOfPymoli_starter.ipynb) for a reference on expected format. ## Option 2: PyCitySchools  Well done! Having spent years analyzing financial records for big banks, you've finally scratched your idealistic itch and joined the education sector. In your latest role, you've become the Chief Data Scientist for your city's school district. In this capacity, you'll be helping the school board and mayor make strategic decisions regarding future school budgets and priorities. As a first task, you've been asked to analyze the district-wide standardized test results. You'll be given access to every student's math and reading scores, as well as various information on the schools they attend. Your responsibility is to aggregate the data to and showcase obvious trends in school performance. Your final report should include each of the following: ### District Summary * Create a high level snapshot (in table form) of the district's key metrics, including: * Total Schools * Total Students * Total Budget * Average Math Score * Average Reading Score * % Passing Math (The percentage of students that passed math.) * % Passing Reading (The percentage of students that passed reading.) * % Overall Passing (The percentage of students that passed math **and** reading.) ### School Summary * Create an overview table that summarizes key metrics about each school, including: * School Name * School Type * Total Students * Total School Budget * Per Student Budget * Average Math Score * Average Reading Score * % Passing Math (The percentage of students that passed math.) * % Passing Reading (The percentage of students that passed reading.) * % Overall Passing (The percentage of students that passed math **and** reading.) ### Top Performing Schools (By % Overall Passing) * Create a table that highlights the top 5 performing schools based on % Overall Passing. Include: * School Name * School Type * Total Students * Total School Budget * Per Student Budget * Average Math Score * Average Reading Score * % Passing Math (The percentage of students that passed math.) * % Passing Reading (The percentage of students that passed reading.) * % Overall Passing (The percentage of students that passed math **and** reading.) ### Bottom Performing Schools (By % Overall Passing) * Create a table that highlights the bottom 5 performing schools based on % Overall Passing. Include all of the same metrics as above. ### Math Scores by Grade\*\* * Create a table that lists the average Math Score for students of each grade level (9th, 10th, 11th, 12th) at each school. ### Reading Scores by Grade * Create a table that lists the average Reading Score for students of each grade level (9th, 10th, 11th, 12th) at each school. ### Scores by School Spending * Create a table that breaks down school performances based on average Spending Ranges (Per Student). Use 4 reasonable bins to group school spending. Include in the table each of the following: * Average Math Score * Average Reading Score * % Passing Math (The percentage of students that passed math.) * % Passing Reading (The percentage of students that passed reading.) * % Overall Passing (The percentage of students that passed math **and** reading.) ### Scores by School Size * Repeat the above breakdown, but this time group schools based on a reasonable approximation of school size (Small, Medium, Large). ### Scores by School Type * Repeat the above breakdown, but this time group schools based on school type (Charter vs. District). As final considerations: * Use the pandas library and Jupyter Notebook. * You must submit a link to your Jupyter Notebook with the viewable Data Frames. * You must include a written description of at least two observable trends based on the data. * See [Example Solution](PyCitySchools/PyCitySchools_starter.ipynb) for a reference on the expected format. ## Hints and Considerations * These are challenging activities for a number of reasons. For one, these activities will require you to analyze thousands of records. Hacking through the data to look for obvious trends in Excel is just not a feasible option. The size of the data may seem daunting, but pandas will allow you to efficiently parse through it. * Second, these activities will also challenge you by requiring you to learn on your feet. Don't fool yourself into thinking: "I need to study pandas more closely before diving in." Get the basic gist of the library and then _immediately_ get to work. When facing a daunting task, it's easy to think: "I'm just not ready to tackle it yet." But that's the surest way to never succeed. Learning to program requires one to constantly tinker, experiment, and learn on the fly. You are doing exactly the _right_ thing, if you find yourself constantly practicing Google-Fu and diving into documentation. There is just no way (or reason) to try and memorize it all. Online references are available for you to use when you need them. So use them! * Take each of these tasks one at a time. Begin your work, answering the basic questions: "How do I import the data?" "How do I convert the data into a DataFrame?" "How do I build the first table?" Don't get intimidated by the number of asks. Many of them are repetitive in nature with just a few tweaks. Be persistent and creative! * Expect these exercises to take time! Don't get discouraged if you find yourself spending hours initially with little progress. Force yourself to deal with the discomfort of not knowing and forge ahead. Consider these hours an investment in your future! * As always, feel encouraged to work in groups and get help from your TAs and Instructor. Just remember, true success comes from mastery and _not_ a completed homework assignment. So challenge yourself to truly succeed! ### Copyright Trilogy Education Services © 2019. All Rights Reserved.
badsectorlabs
[GITLAB MIRROR] AI agent skills Ludus cyber ranges
Viniciuscarvalho
AI-powered feature development orchestrator — PRD → Tech Spec → Tasks → Implementation → Tests → PR — with checkpoint/resume, 5 execution modes, and auto-detection for GitHub/GitLab/Azure DevOps. Claude Code skill.
pathnex
This repo offers foundational code to help you build DevOps skills with tools like Ansible, Terraform, Kubernetes, Jenkins, and GitLab. It includes practical examples and configurations for automating infrastructure, managing containers, and streamlining CI/CD processes, enhancing your DevOps expertise.
pathnex
This repo offers foundational code to help you build DevOps skills with tools like Ansible, Terraform, Kubernetes, Bash, Jenkins, and GitLab. It includes practical examples and configurations for automating infrastructure, managing containers, and streamlining CI/CD processes, enhancing your DevOps expertise.
EPCCed
MSc Programming Skills - Git, GitLab, TravisCI lab. Contact: mikej888
kingoliang
将本地代码仓库或远程 GitHub/GitLab/Gitee 仓库转换为 Claude Code Skill,支持 git diff 增量更新
mbe24
AI-native CLI tool for issue/PR context retrieval across Jira, GitLab, GitHub, and Bitbucket, with structured output for humans and AI agents plus a scaffold aligned with the Agent Skills standard.
ekohe
An AI agent skill that provides comprehensive GitLab integration — fetch issues and merge requests, generate executive summaries, perform structured code reviews, and automate end-to-end issue resolution workflows.
yoriiis
Automated Frontend Code Review skills for GitHub & GitLab. Focused on architecture, security, and accessibility.
nfriend
An Alexa skill for managing your open-source projects hosted on GitLab.com using your voice.
Trex740
Install an agentic coding setup that adds multiple AI agents, skills, and rules to enhance automation across GitHub, Azure DevOps, or GitLab repositories.
juanmanueldaza
fu7ur3pr00f — AI career agent with 41 tools, 12 MCP clients, and 5 specialists. Gathers LinkedIn/GitHub/GitLab data, builds RAG knowledge base, analyzes skill gaps, tracks job markets, generates ATS-optimized CVs. Chat-first, powered by LangChain + ChromaDB.
SuperInstance
repo-first Agent for local or cloud. grow an agent in a repo using the repo itself as the muscle-memory. Run from localhost, from pages.dev, or embedded into any platform app. Move to gitlab or anywhere and optimize git as the agent infrastructure itself. wiki for knowledge, repos for skills, pipelines anywhere
peteroden
Copilot coding agent skills for Jira and GitLab
grandcamel
Claude Code skills for GitLab automation using glab CLI
ALT-F1-OpenClaw
OpenClaw skill for GitLab with full CRUD operations, pipelines, merge requests, issues, and repository automation via GitLab REST API v4
sfc-gh-kchilds
Cortex Code skills for SE Enablement — convert GitLab/GitHub labs into interactive React course apps
googs1025
A Claude Code skill for structured open-source code review — supports GitHub/GitLab PRs, diffs, and code snippets
Edugon0
Practical DevOps project using Terraform, Docker and GitLab to configure infrastructure, automate containers and implement CI/CD, improving essential skills.
danielzotti
My personal website (version 2023) with curriculum, skills, portfolio and blog. Developed in NextJS 14, PWA and SSG + Docker + GitLab CI
isamisushi
A reusable AI agent skill for working with GitLab through the glab CLI, with checked-in command references and a stricter non-guessing workflow.
zawlinnnaing
A local developer tool that enables AI agents (Claude Code, Cursor, GitHub Copilot, etc.) to perform automated Merge Request code reviews against GitLab. Support Agent Skills.
lievertz
Claude skill (use in Code not UI) for building an agents.md (you can symlink to claude.md). Currently only supports gitlab though you could probably swap to github (gh cli) in 5 minutes of vibe coding.
SNE-M23-SN
GitLab is a web-based DevOps lifecycle tool that provides a Git repository manager providing wiki, issue-tracking and continuous integration and deployment pipeline features. In this repository, we will provide two severe vulnerabilities for testing cases where you can hone your skills and gain experience.
KamouloxPelvis
☸️ Kubernetes Portfolio | DevSecOps & SRE Lab : live lab on K3s cluster - Cloud-Native - ✅ CI/CD : Automated pipeline via GitLab Runner & Docker. ✅ Observability : Full monitoring via Prometheus & Grafana. ✅ Sécurity : SSL auto via Cert-Manager, WAF Cloudflare & Sentry. 🛠️ Stack : React, Node.js (TS), Ingress Nginx. Explore to discover my skills.